Applying 1-norm SVM with squared loss to gene selection for cancer classification

作者:Li Zhang, Weida Zhou, Bangjun Wang, Zhao Zhang, Fanzhang Li

摘要

Gene selection methods available have high computational complexity. This paper applies an 1-norm support vector machine with the squared loss (1-norm SVMSL) to implement fast gene selection for cancer classification. The 1-norm SVMSL, a variant of the 1-norm support vector machine (1-norm SVM) has been proposed. Basically, the 1-norm SVMSL can perform gene selection and classification at the same. However, to improve classification performance, we only use the 1-norm SVMSL as a gene selector, and adopt a subsequent classifier to classify the selected genes. We perform extensive experiments on four DNA microarray data sets. Experimental results indicate that the 1-norm SVMSL has a very fast gene selection speed compared with other methods. For example, the 1-norm SVMSL is almost an order of magnitude faster than the 1-norm SVM, and at least four orders of magnitude faster than SVM-RFE (recursive feature elimination), a state-of-the-art method.

论文关键词:Support vector machine, Gene selection, Cancer classification, 1-norm support vector machine, Orthogonal matching pursuit

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论文官网地址:https://doi.org/10.1007/s10489-017-1056-3